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Rapid and Accurate Diagnosis of Acute Aortic Syndrome using Non-contrast CT: A Large-scale, Retrospective, Multi-center and AI-based Study

Authors :
Hu, Yujian
Xiang, Yilang
Zhou, Yan-Jie
He, Yangyan
Yang, Shifeng
Du, Xiaolong
Den, Chunlan
Xu, Youyao
Wang, Gaofeng
Ding, Zhengyao
Huang, Jingyong
Zhao, Wenjun
Wu, Xuejun
Li, Donglin
Zhu, Qianqian
Li, Zhenjiang
Qiu, Chenyang
Wu, Ziheng
He, Yunjun
Tian, Chen
Qiu, Yihui
Lin, Zuodong
Zhang, Xiaolong
He, Yuan
Yuan, Zhenpeng
Zhou, Xiaoxiang
Fan, Rong
Chen, Ruihan
Guo, Wenchao
Zhang, Jianpeng
Mok, Tony C. W.
Li, Zi
Lu, Le
Lang, Dehai
Li, Xiaoqiang
Wang, Guofu
Lu, Wei
Huang, Zhengxing
Xu, Minfeng
Zhang, Hongkun
Publication Year :
2024

Abstract

Chest pain symptoms are highly prevalent in emergency departments (EDs), where acute aortic syndrome (AAS) is a catastrophic cardiovascular emergency with a high fatality rate, especially when timely and accurate treatment is not administered. However, current triage practices in the ED can cause up to approximately half of patients with AAS to have an initially missed diagnosis or be misdiagnosed as having other acute chest pain conditions. Subsequently, these AAS patients will undergo clinically inaccurate or suboptimal differential diagnosis. Fortunately, even under these suboptimal protocols, nearly all these patients underwent non-contrast CT covering the aorta anatomy at the early stage of differential diagnosis. In this study, we developed an artificial intelligence model (DeepAAS) using non-contrast CT, which is highly accurate for identifying AAS and provides interpretable results to assist in clinical decision-making. Performance was assessed in two major phases: a multi-center retrospective study (n = 20,750) and an exploration in real-world emergency scenarios (n = 137,525). In the multi-center cohort, DeepAAS achieved a mean area under the receiver operating characteristic curve of 0.958 (95% CI 0.950-0.967). In the real-world cohort, DeepAAS detected 109 AAS patients with misguided initial suspicion, achieving 92.6% (95% CI 76.2%-97.5%) in mean sensitivity and 99.2% (95% CI 99.1%-99.3%) in mean specificity. Our AI model performed well on non-contrast CT at all applicable early stages of differential diagnosis workflows, effectively reduced the overall missed diagnosis and misdiagnosis rate from 48.8% to 4.8% and shortened the diagnosis time for patients with misguided initial suspicion from an average of 681.8 (74-11,820) mins to 68.5 (23-195) mins. DeepAAS could effectively fill the gap in the current clinical workflow without requiring additional tests.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.15222
Document Type :
Working Paper